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Comparison of photo-matching algorithms commonly used for photographic capture?¢????recapture studies

机译:通常用于摄影捕捉的照相匹配算法的比较-捕捉研究

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摘要

Abstract Photographic capture?¢????recapture is a valuable tool for obtaining demographic information on wildlife populations due to its noninvasive nature and cost-effectiveness. Recently, several computer-aided photo-matching algorithms have been developed to more efficiently match images of unique individuals in databases with thousands of images. However, the identification accuracy of these algorithms can severely bias estimates of vital rates and population size. Therefore, it is important to understand the performance and limitations of state-of-the-art photo-matching algorithms prior to implementation in capture?¢????recapture studies involving possibly thousands of images. Here, we compared the performance of four photo-matching algorithms; Wild-ID, I3S Pattern+, APHIS, and AmphIdent using multiple amphibian databases of varying image quality. We measured the performance of each algorithm and evaluated the performance in relation to database size and the number of matching images in the database. We found that algorithm performance differed greatly by algorithm and image database, with recognition rates ranging from 100% to 22.6% when limiting the review to the 10 highest ranking images. We found that recognition rate degraded marginally with increased database size and could be improved considerably with a higher number of matching images in the database. In our study, the pixel-based algorithm of AmphIdent exhibited superior recognition rates compared to the other approaches. We recommend carefully evaluating algorithm performance prior to using it to match a complete database. By choosing a suitable matching algorithm, databases of sizes that are unfeasible to match ?¢????by eye?¢???? can be easily translated to accurate individual capture histories necessary for robust demographic estimates.
机译:摘要摄影捕获由于具有非侵入性和成本效益,是一种获取野生动物种群统计信息的宝贵工具。最近,已经开发了几种计算机辅助的照片匹配算法,以更有效地将数据库中唯一个体的图像与数千张图像进行匹配。但是,这些算法的识别准确度会严重影响生命率和人口规模的估计。因此,重要的是要在可能涉及成千上万张图像的捕获再捕获研究中实施之前,了解最新的照片匹配算法的性能和局限性。在这里,我们比较了四种照片匹配算法的性能; Wild-ID,I3S Pattern +,APHIS和AmphIdent使用具有不同图像质量的多个两栖数据库。我们测量了每种算法的性能,并评估了与数据库大小和数据库中匹配图像数量有关的性能。我们发现算法的性能因算法和图像数据库的不同而有很大差异,当将评论限制为10个最高排名的图像时,识别率范围为100%至22.6%。我们发现,随着数据库规模的增加,识别率略有下降,而数据库中匹配图像的数量越多,识别率就会大大提高。在我们的研究中,与其他方法相比,基于像素的AmphIdent算法表现出更高的识别率。我们建议在使用它来匹配完整的数据库之前,先仔细评估算法性能。通过选择合适的匹配算法,肉眼无法匹配大小匹配的数据库。可以轻松地转换为准确的个人捕获历史记录,以进行可靠的人口统计估算。

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